Cluster analysis to identify phenotypes in COPD

M. Han, B. Bartholmai, J. Curtis, F. Sciurba, B. Thompson, M. Frederick, D. Li, M. Schwarz, A. Limper, R. Wise, F. Martinez (Ann Arbor, Rochester, Pittsburgh, Baltimore, Denver, United States Of America)

Source: Annual Congress 2009 - Quality of life and symptoms in COPD
Session: Quality of life and symptoms in COPD
Session type: Thematic Poster Session
Number: 3432
Disease area: Airway diseases

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M. Han, B. Bartholmai, J. Curtis, F. Sciurba, B. Thompson, M. Frederick, D. Li, M. Schwarz, A. Limper, R. Wise, F. Martinez (Ann Arbor, Rochester, Pittsburgh, Baltimore, Denver, United States Of America). Cluster analysis to identify phenotypes in COPD. Eur Respir J 2009; 34: Suppl. 53, 3432

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